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Artificial Intelligence Pipeline to Bridge the Gap Between Bench Researchers and Clinical Researchers in Precision Medicine

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Journal Med One
Date 2021 Jan 29
PMID 33511289
Citations 1
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Abstract

Precision medicine informatics is a field of research that incorporates learning systems that generate new knowledge to improve individualized treatments using integrated data sets and models. Given the ever-increasing volumes of data that are relevant to patient care, artificial intelligence (AI) pipelines need to be a central component of such research to speed discovery. Applying AI methodology to complex multidisciplinary information retrieval can support efforts to discover bridging concepts within collaborating communities. This dovetails with precision medicine research, given the information rich multi-omic data that are used in precision medicine analysis pipelines. In this perspective article we define a prototype AI pipeline to facilitate discovering research connections between bioinformatics and clinical researchers. We propose building knowledge representations that are iteratively improved through AI and human-informed learning feedback loops supported through crowdsourcing. To illustrate this, we will explore the specific use case of nonalcoholic fatty liver disease, a growing health care problem. We will examine AI pipeline construction and utilization in relation to bench-to-bedside bridging concepts with interconnecting knowledge representations applicable to bioinformatics researchers and clinicians.

Citing Articles

Significance of Artificial Intelligence in the Study of Virus-Host Cell Interactions.

Elste J, Saini A, Mejia-Alvarez R, Mejia A, Millan-Pacheco C, Swanson-Mungerson M Biomolecules. 2024; 14(8).

PMID: 39199298 PMC: 11352483. DOI: 10.3390/biom14080911.

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